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A single image deep learning approach to restoration of corrupted remote sensing products

2020-04-08 19:11:32
Anna Petrovskaia, Raghavendra B. Jana, Ivan V. Oseledets

Abstract

Remote sensing images are used for a variety of analyses, from agricultural monitoring, to disaster relief, to resource planning, among others. The images can be corrupted due to a number of reasons, including instrument errors and natural obstacles such as clouds. We present here a novel approach for reconstruction of missing information in such cases using only the corrupted image as the input. The Deep Image Prior methodology eliminates the need for a pre-trained network or an image database. It is shown that the approach easily beats the performance of traditional single-image methods.

Abstract (translated)

URL

https://arxiv.org/abs/2004.04209

PDF

https://arxiv.org/pdf/2004.04209.pdf


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